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Algebra / Mathematics / Linear algebra / Multivariate statistics / Matrix theory / Tensors / Real algebraic geometry / Non-negative matrix factorization / Matrix / Higher-order singular value decomposition / Eigenvalues and eigenvectors / Principal component analysis
Date: 2015-07-20 20:08:36
Algebra
Mathematics
Linear algebra
Multivariate statistics
Matrix theory
Tensors
Real algebraic geometry
Non-negative matrix factorization
Matrix
Higher-order singular value decomposition
Eigenvalues and eigenvectors
Principal component analysis

JMLR: Workshop and Conference Proceedings vol 40:1–51, 2015 Tensor principal component analysis via sum-of-squares proofs Sam Hopkins Jonathan Shi David Steurer

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